Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.

Reconstructing transcriptional regulatory networks is an important task in functional genomics. Data obtained from experiments that perturb genes by knockouts or RNA interference contain useful information for addressing this reconstruction problem. However, such data can be limited in size and/or a...

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Main Authors: Ali Shojaie, Alexandra Jauhiainen, Michael Kallitsis, George Michailidis
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3938831?pdf=render
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spelling doaj-8e98cd8c1c4e41579e3b4d9314529b132020-11-25T02:30:59ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0192e8239310.1371/journal.pone.0082393Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.Ali ShojaieAlexandra JauhiainenMichael KallitsisGeorge MichailidisReconstructing transcriptional regulatory networks is an important task in functional genomics. Data obtained from experiments that perturb genes by knockouts or RNA interference contain useful information for addressing this reconstruction problem. However, such data can be limited in size and/or are expensive to acquire. On the other hand, observational data of the organism in steady state (e.g., wild-type) are more readily available, but their informational content is inadequate for the task at hand. We develop a computational approach to appropriately utilize both data sources for estimating a regulatory network. The proposed approach is based on a three-step algorithm to estimate the underlying directed but cyclic network, that uses as input both perturbation screens and steady state gene expression data. In the first step, the algorithm determines causal orderings of the genes that are consistent with the perturbation data, by combining an exhaustive search method with a fast heuristic that in turn couples a Monte Carlo technique with a fast search algorithm. In the second step, for each obtained causal ordering, a regulatory network is estimated using a penalized likelihood based method, while in the third step a consensus network is constructed from the highest scored ones. Extensive computational experiments show that the algorithm performs well in reconstructing the underlying network and clearly outperforms competing approaches that rely only on a single data source. Further, it is established that the algorithm produces a consistent estimate of the regulatory network.http://europepmc.org/articles/PMC3938831?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Ali Shojaie
Alexandra Jauhiainen
Michael Kallitsis
George Michailidis
spellingShingle Ali Shojaie
Alexandra Jauhiainen
Michael Kallitsis
George Michailidis
Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
PLoS ONE
author_facet Ali Shojaie
Alexandra Jauhiainen
Michael Kallitsis
George Michailidis
author_sort Ali Shojaie
title Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
title_short Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
title_full Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
title_fullStr Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
title_full_unstemmed Inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
title_sort inferring regulatory networks by combining perturbation screens and steady state gene expression profiles.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Reconstructing transcriptional regulatory networks is an important task in functional genomics. Data obtained from experiments that perturb genes by knockouts or RNA interference contain useful information for addressing this reconstruction problem. However, such data can be limited in size and/or are expensive to acquire. On the other hand, observational data of the organism in steady state (e.g., wild-type) are more readily available, but their informational content is inadequate for the task at hand. We develop a computational approach to appropriately utilize both data sources for estimating a regulatory network. The proposed approach is based on a three-step algorithm to estimate the underlying directed but cyclic network, that uses as input both perturbation screens and steady state gene expression data. In the first step, the algorithm determines causal orderings of the genes that are consistent with the perturbation data, by combining an exhaustive search method with a fast heuristic that in turn couples a Monte Carlo technique with a fast search algorithm. In the second step, for each obtained causal ordering, a regulatory network is estimated using a penalized likelihood based method, while in the third step a consensus network is constructed from the highest scored ones. Extensive computational experiments show that the algorithm performs well in reconstructing the underlying network and clearly outperforms competing approaches that rely only on a single data source. Further, it is established that the algorithm produces a consistent estimate of the regulatory network.
url http://europepmc.org/articles/PMC3938831?pdf=render
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